A Multi-Indicator Approach For Enhancing Real-Time Worker Fatigue Monitoring In Mining Environments - SME Annual Meeting 2026
- Organization:
- Society for Mining, Metallurgy & Exploration
- Pages:
- 11
- File Size:
- 1194 KB
- Publication Date:
- Feb 22, 2026
Abstract
This research developed and simulated a novel multi-indicator
Fatigue Detection and Alert System (FDAS) designed
to enhance fatigue detection accuracy in mining environments.
The system integrates a comprehensive set of inputs:
eye blink rate, eye closure duration, yawning frequency, distraction
levels, Pre-shift Check-in Scores (Self-report) and
Electroencephalography (EEG) Levels. Using MATLAB’s
Fuzzy Logic Rule Viewer (FLRV) and Simulink, simulations
demonstrated the FDAS’s robust ability to process these
diverse physiological and behavioural indicators accurately.
It effectively classified operator fatigue into low, moderate,
and high fatigue levels, consistently providing appropriate
outputs and corresponding intervention recommendations
across various mixed-signal scenarios. The system achieved
a calculated accuracy of 85.19% across 27 test entries, with
a standard deviation of approximately 1.8459, confirming
its reliability for real-time fatigue monitoring. These findings
highlight the significant potential of this fuzzy logicbased
approach to proactively identify early signs of fatigue,
substantially enhancing safety and operational efficiency in
demanding mining operations.
Citation
APA: (2026) A Multi-Indicator Approach For Enhancing Real-Time Worker Fatigue Monitoring In Mining Environments - SME Annual Meeting 2026
MLA: A Multi-Indicator Approach For Enhancing Real-Time Worker Fatigue Monitoring In Mining Environments - SME Annual Meeting 2026. Society for Mining, Metallurgy & Exploration, 2026.